Evidence-based research for Intelligent Governments: Lessons learned from the Justice system

Lameiras, Mariana, Ben Dhaou, Soumaya and Soares, Delfina, "Evidence-based research for Intelligent Governments: Lessons learned from the Justice system" 21st Annual International Conference on Digital Government Research (dg.o 2020), Online, 2020/06/15-19.

Document type:
Conference Publication

Metadata
Links
Versions
Statistics
  • Sub-type Workshop paper
    Author Lameiras, Mariana
    Ben Dhaou, Soumaya
    Soares, Delfina
    Title Evidence-based research for Intelligent Governments: Lessons learned from the Justice system
    Event Series Annual International Conference on Digital Government Research (dg.o)
    Publication Date 2020-06
    Place of Publication New York
    Publisher ACM Press
    Pages 367-368
    Title of Event 21st Annual International Conference on Digital Government Research (dg.o 2020)
    Date of Event 2020/06/15-19
    Place of Event Online
    Language eng
    Abstract Evidence-based and policy-driven research brings additional challenges for researchers and there is still much to explore in terms of research methods and its applicability for institutions’ management and overall operations. Drawing on a concrete multi-method investigation developed for the Justice sector of an European country, the goal of this workshop is to share this experience and foster collective reflection and discussion on the added value and adequacy of scientific research for governments, with particular emphasis on the relationship between researchers and practitioners and policy makers as well as on the usefulness, impact and assessment of policy recommendations resulting from academic research.
    UNBIS Thesaurus POLICY-MAKING
    Keyword workshop
    evidence-based research
    policy-driven research
    justice system
    Copyright Holder ACM Press
    Copyright Year 2020
    Copyright type All rights reserved
    ISBN 9781450387910
    DOI 10.1145/3396956.3396976
  • Versions
    Version Filter Type
  • Citation counts
    Google Scholar Search Google Scholar
    Access Statistics: 297 Abstract Views  -  Detailed Statistics
    Created: Thu, 25 Jun 2020, 22:11:48 JST by Mario Peixoto on behalf of UNU EGOV